Institute of Biomedical Engineering, Department of Electrical and Electronic Engineering, Federal University of Santa Catarina, Florianópolis, Brazil.
Department of Health Science and Technology, Center for Neuroplasticity and Pain (CNAP), SMI, Aalborg University, Aalborg, Denmark.
Med Biol Eng Comput. 2020 Jul;58(7):1625-1636. doi: 10.1007/s11517-020-02181-1. Epub 2020 May 24.
This article demonstrates the power and flexibility of linear mixed-effects models (LMEMs) to investigate high-density surface electromyography (HD-sEMG) signals. The potentiality of the model is illustrated by investigating the root mean squared value of HD-sEMG signals in the tibialis anterior muscle of healthy (n = 11) and individuals with diabetic peripheral neuropathy (n = 12). We started by presenting the limitations of traditional approaches by building a linear model with only fixed effects. Then, we showed how the model adequacy could be increased by including random effects, as well as by adding alternative correlation structures. The models were compared with the Akaike information criterion and the Bayesian information criterion, as well as the likelihood ratio test. The results showed that the inclusion of the random effects of intercept and slope, along with an autoregressive moving average correlation structure, is the one that best describes the data (p < 0.01). Furthermore, we demonstrate how the inclusion of additional variance structures can accommodate heterogeneity in the residual analysis and therefore increase model adequacy (p < 0.01). Thus, in conclusion, we suggest that adopting LMEM to repeated measures such as electromyography can provide additional information from the data (e.g. test for alternative correlation structures of the RMS value), and hence provide new insights into HD-sEMG-related work.
本文展示了线性混合效应模型 (LMEMs) 在研究高密度表面肌电图 (HD-sEMG) 信号方面的强大功能和灵活性。通过研究健康个体 (n = 11) 和糖尿病周围神经病变个体 (n = 12) 胫骨前肌的 RMS 值,说明了该模型的潜力。我们首先通过构建仅包含固定效应的线性模型,展示了传统方法的局限性。然后,我们展示了如何通过包含随机效应以及添加替代相关结构来提高模型的适用性。通过赤池信息量准则和贝叶斯信息量准则以及似然比检验对模型进行了比较。结果表明,包含截距和斜率的随机效应以及自回归移动平均相关结构是最能描述数据的模型 (p < 0.01)。此外,我们还展示了如何通过包含额外的方差结构来适应残差分析中的异质性,从而提高模型的适用性 (p < 0.01)。因此,总之,我们建议采用 LMEM 对肌电图等重复测量进行分析,可以从数据中提供额外的信息(例如,对 RMS 值的替代相关结构进行检验),从而为与 HD-sEMG 相关的工作提供新的见解。